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优化和验证 EconomicClusters 模型,以促进全球健康差异研究:以喀麦隆和加纳为例。

Optimization and validation of the EconomicClusters model for facilitating global health disparities research: Examples from Cameroon and Ghana.

机构信息

Department of Surgery, Center for Global Surgical Studies, University of California San Francisco, San Francisco, California, United States of America.

Division of Biostatistics, School of Public Health, University of California Berkeley, Berkeley, California, United States of America.

出版信息

PLoS One. 2019 May 23;14(5):e0217197. doi: 10.1371/journal.pone.0217197. eCollection 2019.

Abstract

Health disparities research in low- and middle-income countries (LMICs) is hampered by the difficulty of measuring economic status in low-resource settings. We previously developed the EconomicClusters k-medoids clustering-based algorithm for defining population-specific economic models based on few Demographic and Health Surveys (DHS) assets. The algorithm previously defined a twenty-group economic model for Cameroon. The aims of this study are to optimize the functionality of our EconomicClusters algorithm and app based on collaborator feedback from early use of this twenty-group economic model, to test the validity of the model as a metric of economic status, and to assess the utility of the model in another LMIC context. We condense the twenty Cameroonian economic groups into fewer, ordinally-ranked, groups using agglomerative hierarchical clustering based on mean cluster child height-for-age Z-score (HAZ), women's literacy score, and proportion of children who are deceased. We develop an EconomicClusters model for Ghana consisting of five economic groups and rank these groups based on the same three variables. The proportion of variance in women's literacy score accounted for by the EconomicClusters model was 5-12% less than the proportion of variance accounted for by the DHS Wealth Index model. The proportion of the variance in child HAZ and proportion of children who are deceased accounted for by the EconomicClusters model was similar to (0.4-2.5% less than) the proportion of variance accounted for by the DHS Wealth Index model. The EconomicClusters model requires asking only five questions, as opposed to greater than twenty Wealth Index questions. The EconomicClusters algorithm and app could facilitate health disparities research in any country with DHS data by generating ordinally-ranked, population-specific economic models that perform nearly as well as the Wealth Index in evaluating variability in health and social outcomes based on wealth status but that are more feasible to assess in time-constrained settings.

摘要

在资源匮乏的环境中,衡量经济状况十分困难,这阻碍了低中等收入国家(LMICs)的健康差异研究。我们先前开发了基于经济聚类 k-均值聚类算法的算法,用于根据人口较少的人口与健康调查(DHS)资产定义特定人群的经济模型。该算法先前为喀麦隆定义了一个 20 组的经济模型。本研究的目的是根据该 20 组经济模型早期使用的合作者反馈,优化我们的经济聚类算法和应用程序的功能,测试该模型作为经济状况衡量标准的有效性,并评估该模型在另一个 LMIC 环境中的实用性。我们根据平均聚类子高度年龄 Z 分数(HAZ)、妇女识字率和死亡儿童比例的聚类均值,将 20 个喀麦隆经济组压缩成更少的、有序排列的组,使用凝聚层次聚类。我们为加纳开发了一个包含五个经济组的经济聚类模型,并根据相同的三个变量对这些组进行排名。经济聚类模型对妇女识字率方差的解释比例比 DHS 财富指数模型低 5-12%。经济聚类模型对儿童 HAZ 方差和死亡儿童比例的解释比例与 DHS 财富指数模型相似(低 0.4-2.5%)。经济聚类模型只需询问五个问题,而不是财富指数的二十多个问题。经济聚类算法和应用程序可以通过生成有序排列的、特定于人群的经济模型,在任何具有 DHS 数据的国家促进健康差异研究,这些模型在评估基于财富状况的健康和社会结果的变异性方面,与财富指数一样有效,但在时间紧迫的情况下更易于评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eae9/6532895/0c1a84f8eb2c/pone.0217197.g001.jpg

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